Using hyperspectral imaging and machine learning to identify food-contaminated compostable and recyclable plastics.

UCL open environment Pub Date : 2025-04-02 eCollection Date: 2025-01-01 DOI:10.14324/111.444/ucloe.3237
Nutcha Taneepanichskul, Helen C Hailes, Mark Miodownik
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Abstract

With the increasing public legislation aimed at reducing plastic pollution, compostable plastics have emerged as an alternative to conventional plastics for some food packaging and food service items. However, the true value of compostable plastics can only be realised if they do not enter the environment as contaminants but instead are processed along with food waste using industrial composting facilities. Distinguishing compostable plastics from other plastics in this waste stream is an outstanding problem. Currently, near-infrared technology is widely used to identify polymers, but it falls short in distinguishing plastics contaminated with food waste. This study investigates the application of hyperspectral imaging to address this challenge, enhancing the detection and sorting of contaminated compostable plastics. By combining hyperspectral imaging with various machine learning algorithms we show it is possible to accurately identify and classify plastic packaging with food waste contamination, achieving up to 99% accuracy. The study also measures the impact of plastic features such as darkness, size and level of contamination on model performance, with darkness having the most significant impact. The developed machine learning model can detect plastic with higher levels of contamination more accurately compared to our previous study. Implementing hyperspectral imaging in waste management systems can significantly increase composting and recycling rates, and improve the quality of recycled products. This advanced approach supports the circular economy by ensuring that both compostable and recyclable plastics are effectively processed and recycled, minimising environmental impact.

使用高光谱成像和机器学习来识别受食物污染的可堆肥和可回收塑料。
随着旨在减少塑料污染的公共立法的增加,可降解塑料已经成为一些食品包装和食品服务项目的传统塑料的替代品。然而,可堆肥塑料的真正价值只有在它们不作为污染物进入环境,而是与食品垃圾一起使用工业堆肥设施进行处理的情况下才能实现。在这种废物流中区分可堆肥塑料和其他塑料是一个突出的问题。目前,近红外技术被广泛用于识别聚合物,但在识别被食物垃圾污染的塑料方面却存在不足。本研究探讨了高光谱成像的应用,以解决这一挑战,提高污染的可堆肥塑料的检测和分类。通过将高光谱成像与各种机器学习算法相结合,我们可以准确地识别和分类含有食物垃圾污染的塑料包装,准确率高达99%。该研究还测量了塑料特征对模型性能的影响,如黑暗、尺寸和污染程度,其中黑暗的影响最大。与我们之前的研究相比,开发的机器学习模型可以更准确地检测出污染程度更高的塑料。在废物管理系统中实施高光谱成像可以显著提高堆肥和回收率,并改善回收产品的质量。这种先进的方法通过确保可堆肥和可回收塑料得到有效处理和回收,最大限度地减少对环境的影响,从而支持循环经济。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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